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3D GGO candidate extraction in lung CT images using multilevel thresholding on supervoxels

机译:使用超曲线阈值对超曲线阈值的肺CT图像中的3D GGO候选提取

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The earlier detection of ground glass opacity (GGO) is of great importance since GGOs are more likely to be malignant than solid nodules. However, the detection of GGO is a difficult task in lung cancer screening. This paper proposes a novel GGO candidate extraction method, which performs multilevel thresholding on supervoxels in 3D lung CT images. Firstly, we segment the lung parenchyma based on Otsu algorithm. Secondly, the voxels which are adjacent in 3D discrete space and sharing similar grayscale are clustered into supervoxels. This procedure is used to enhance GGOs and reduce computational complexity. Thirdly, Hessian matrix is used to emphasize focal GGO candidates. Lastly, an improved adaptive multilevel thresholding method is applied on segmented clusters to extract GGO candidates. The proposed method was evaluated on a set of 19 lung CT scans containing 166 GGO lesions from the Lung CT Imaging Signs (LISS) database. The experimental results show that our proposed GGO candidate extraction method is effective, with a sensitivity of 100% and 26.3 of false positives per scan (665 GGO candidates, 499 non-GGO regions and 166 GGO regions). It can handle both focal GGOs and diffuse GGOs.
机译:由于GGO更容易恶性,所以较早的地面玻璃不透明度(GGO)的检测非常重要。然而,GGO的检测是肺癌筛查中的一项艰巨任务。本文提出了一种新的GGO候选提取方法,其在3D肺CT图像中对超级素进行多级阈值。首先,我们基于OTSU算法对肺实质进行分割。其次,在3D离散空间和共享类似的灰度中相邻的体素被聚集到超级索入中。此过程用于增强GGO并降低计算复杂性。第三,Hessian矩阵用于强调焦点GGO候选者。最后,在分段簇上应用改进的自适应多级阈值阈值方法以提取GGO候选。在含有来自肺CT成像标志(LISS)数据库的一组196个GGO病变的一组19肺CT扫描上评估了该方法。实验结果表明,我们所提出的GGO候选提取方法有效,灵敏度为每次扫描的误报(665个候选人,499个非GGO区和166个GGO区)。它可以处理焦点GGO和漫反射GGO。

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